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Testing and Understanding Second-Order Statistics of Spike Patterns Using Spike Shuffling Methods

机译:使用峰值改组方法测试和了解峰值模式的二阶统计量

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We introduce a framework of spike shuffling methods to test the significance and understand the biological meanings of the second-order statistics of spike patterns recorded in experiments or simulations. In this framework, each method is to evidently alter a specific pattern statistics, leaving the other statistics unchanged. We then use this method to understand the contribution of different second-order statistics to the variance of synaptic changes induced by the spike patterns self-organized by an integrate-and-fire (LIF) neuronal network under STDP and synaptic homeostasis. We find that burstiness/regularity and heterogeneity of cross-correlations are important to determine the variance of synaptic changes under asynchronous states, while heterogeneity of cross-correlations is the main factor to cause the variance of synaptic changes when the network moves into strong synchronous states.
机译:我们引入了一个峰值改组方法框架来测试其重要性,并了解在实验或模拟中记录的峰值模式二阶统计量的生物学意义。在此框架中,每种方法显然都可以更改特定的模式统计信息,而其他统计信息则保持不变。然后,我们使用这种方法来了解不同的二阶统计量对STDP和突触稳态下由整合和发射(LIF)神经元网络自组织的尖峰模式引起的突触变化方差的贡献。我们发现互相关的突发性/规则性和异质性对于确定异步状态下突触变化的方差很重要,而互相关的异质性是网络进入强同步状态时引起突触变化方差的主要因素。 。

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